基于转移概率学习的图像聚类

IF 13.7
Xingyu Xue;Wenhui Zhao;Quanxue Gao;Ming Yang;Cheng Deng
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引用次数: 0

摘要

对图像数据进行大规模多视图聚类,取得了令人印象深刻的聚类性能和效率。然而,大多数方法在聚类中缺乏可解释性,并且没有充分考虑不同视图之间分布的互补性。为了解决这些问题,我们引入了带有转移概率学习的多视图聚类(MVC-TPL)。具体而言,我们从转移概率的角度构建锚图分解模型,同时学习从样本到聚类和从锚点到聚类的转移概率矩阵,分别作为样本和锚点的软标签矩阵。该模型实现了一步标签获取,并提供了一个合理的概率解释模型。此外,由于样本簇和锚点在所有视图中应该是一致的,我们在两个矩阵上使用Schatten p-范数正则化,有效地挖掘视图之间分布的互补信息,从而更一致地对齐视图之间的标签。在4个小尺度数据集和3个大尺度数据集上的综合测试证实了该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Clustering With Transition Probabilities Learning
Large-scale multi-view clustering for image data has achieved impressive clustering performance and efficiency. However, most methods lack interpretability in clustering and do not fully consider the complementarity of distributions between different views. To address these problems, we introduce Multi-View Clustering with Transition Probabilities Learning (MVC-TPL). Specifically, we construct an anchor graph factorization model from the perspective of transition probabilities, while simultaneously learning transition probability matrices from samples to clusters and from anchor points to clusters, serving as soft label matrices for samples and anchor points, respectively. This model enables one-step label acquisition and provides the model with a sound probability interpretation. Moreover, since the clusters of samples and anchor points should be consistent across all views, we employ Schatten p-norm regularization on the two matrices, effectively mining the complementary information distributed among the views, thereby aligning the labels across views more consistently. Comprehensive testing on four small-scale datasets and three large-scale datasets confirms the effectiveness of this model.
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